基于局部搜索的电力系统可靠性评估智能状态空间剪枝

R. Green, Lingfeng Wang, Mansoor Alam
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引用次数: 7

摘要

一种称为智能状态空间修剪(ISSP)的方法最近被开发和应用,以减少在使用非顺序蒙特卡罗模拟(MCS)时实现收敛所需的计算资源。该算法的主要应用是复合电力系统可靠性的概率评估。尽管计算资源通常减少50%以上,但ISSP已被证明在使用不同基于种群的元启发式算法实现时表现不同。在考虑智能电网时,这种计算资源的减少尤为重要,因为智能电网的复杂性将远远超过目前的电网。为了进一步推进这一研究方向,本文着重于以下四个方面的贡献:1)提出了一种二元版本的确定性中心力优化(CFO)优化算法;2)该新算法对ISSP算法的作用;3)将局部搜索技术与三种风格的ISSP算法相结合以提高性能;4)讨论了ISSP算法在智能电网可靠性评估中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent State Space Pruning with local search for power system reliability evaluation
A methodology called Intelligent State Space Pruning (ISSP) has recently been developed and applied in order to reduce the computational resources necessary to achieve convergence when using non-sequential Monte Carlo Simulation (MCS). The main application of this algorithm has been the probabilistic evaluation of composite power system reliability. ISSP has been shown to perform differently when implemented using different population based metaheuristic algorithms, though computation resources are typically reduced by more than 50%. This reduction in computation resources is particularly important when considering the smart grid - a system whose complexity will be far beyond that of the present power grid. In order to further this line of research, this paper focuses on four contributions: 1) The presentation of a binary version of the deterministic Central Force Optimization (CFO) optimization algorithm, 2) The role of this new algorithm regarding ISSP, 3) The integration of a local search technique with three flavors of the ISSP algorithm in order to improve performance, and 4) A discussion of the role that ISSP may play in the reliability evaluation of the smart grid.
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